Dynamic OLS
Computes the Saikkonen (1990) Dynamic OLS estimator.
cointRegD(x, y, deter, kernel = c("ba", "pa", "qs", "tr"), bandwidth = c("and", "nw"), n.lead = NULL, n.lag = NULL, kmax = c("k4", "k12"), info.crit = c("AIC", "BIC"), demeaning = FALSE, check = TRUE, ...)
x |
[ |
y |
[ |
deter |
[ |
kernel |
[ |
bandwidth |
[ |
n.lead, n.lag |
[ |
kmax |
[ |
info.crit |
[ |
demeaning |
[ |
check |
[ |
... |
Arguments passed to |
The equation for which the FM-OLS estimator is calculated:
y = δ * D + β * x + u
with D as the deterministics matrix. Then θ = (δ', β')' is the full parameter vector.
Information about the D-OLS specific arguments:
n.lag
, n.lead
A positive number to set the number
of lags and leads. If at least one of them is equal to NULL
(default), the function getLeadLag
will be used to
calculate them automatically (see Choi and Kurozumi (2012) for details).
In that case, the following two arguments are needed.
kmax
Maximal value for lags and leads, when they are
calculated automatically. If "k4", then the maximum is equal to
floor(4 * (x.T/100)^(1/4))
, else it's
floor(12 * (x.T/100)^(1/4))
with x.T
is equal
to the data's length. One of "k4"
or "k12"
.
Default is "k4"
.
info.crit
Information criterion to use for the automatical
calculation of lags and leads. One of "AIC"
or "BIC"
.
Default is "AIC"
.
[cointReg
]. List with components:
beta
[numeric
]coefficients of the regressors
delta
[numeric
]coefficients of the deterministics
theta
[numeric
]combined coefficients of beta
and delta
sd.theta
[numeric
]standard errors for theta
t.theta
[numeric
]t-values for theta
p.theta
[numeric
]p-values for theta
theta.all
[numeric
]combined coefficients of beta
, delta
and the auxiliary
leads-and-lags regressors
residuals
[numeric
]D-OLS residuals (length depends on leads and lags)
omega.u.v
[numeric
]conditional long-run variance based on OLS residuals
varmat
[matrix
]variance-covariance matrix
Omega
[list
]the whole long-run variance matrix and parts of it
bandwidth
[list
]number and name of the calculated bandwidth
kernel
[character
]abbr. name of kernel type
lead.lag
[list
]leads-and-lags parameters
Phillips, P.C.B. and M. Loretan (1991): "Estimating Long Run Economic Equilibria," Review of Economic Studies, 58, 407–436, DOI:10.2307/2298004.
Saikkonen, P. (1991): "Asymptotically Efficient Estimation of Cointegrating Regressions," Econometric Theory, 7, 1–21, DOI:10.1017/S0266466600004217.
Stock, J.H. and M.W. Watson (1993): "A Simple Estimator of Cointegrating Vectors in Higher Order Integrated Systems," Econometrica, 61, 783–820, DOI:10.2307/2951763.
Other cointReg: cointRegFM
,
cointRegIM
, cointReg
,
plot.cointReg
, print.cointReg
Other D-OLS: getLeadLag
,
getModD
, makeLeadLagMatrix
set.seed(1909) x1 <- cumsum(rnorm(100, mean = 0.05, sd = 0.1)) x2 <- cumsum(rnorm(100, sd = 0.1)) + 1 x3 <- cumsum(rnorm(100, sd = 0.2)) + 2 x <- cbind(x1, x2, x3) y <- x1 + x2 + x3 + rnorm(100, sd = 0.2) + 1 deter <- cbind(level = 1, trend = 1:100) test <- cointRegD(x, y, deter, n.lead = 2, n.lag = 2, kernel = "ba", bandwidth = "and") print(test) test2 <- cointRegD(x, y, deter, kmax = "k4", info.crit = "BIC", kernel = "ba", bandwidth = "and") print(test2)
Please choose more modern alternatives, such as Google Chrome or Mozilla Firefox.